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首页> 外文期刊>The International journal of risk & safety in medicine. >An intelligent algorithm for assessing patient safety culture and adverse events voluntary reporting using PCA and ANFIS
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An intelligent algorithm for assessing patient safety culture and adverse events voluntary reporting using PCA and ANFIS

机译:一种评估患者安全文化和不良事件自愿报告的智能算法,使用PCA和ANFIS

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BACKGROUND: Patient safety culture (PSC) as a main component of the organizational culture plays a key role in providing safe, effective and economic cares and services in healthcare organizations. PSC provides a way to assist hospitals in order to improve patient safety and prevent medical errors. OBJECTIVE: The present study aimed to measure PSC and healthcare professionals' attitude towards voluntary reporting of adverse events in two hospitals in Iran and to develop a hybrid intelligent approach for modeling PSC grades. METHODS: The Hospital Survey on Patient Safety Culture (HSOPSC) questionnaire and a two-part questionnaire were used for examining the PSC and healthcare professionals' attitude towards voluntary reporting of adverse events, respectively. Principal component analysis (PCA) was applied to extract of the main components in the HSOPSC questionnaire and to construct 12 dimensions of patient safety culture. The overall grade of patient safety culture was modeled using adaptive neuro-fuzzy inference systems (ANFIS) as a classification problem. RESULTS: Almost half of the participants have experienced a medical error and adverse events. The PSC grade was acceptable from the point of view of 55.5% and 50% of participants in hospital No.1 and hospital No.2, respectively. The overall accuracy of ANFIS in modeling overall grades of patient safety culture in both study hospitals was 0.84. Of those individuals gave an acceptable grade on patient safety culture in both study hospitals, more than 50% believed that all medical errors and near misses should be reported. CONCLUSIONS: The ANFIS algorithm was proposed for modeling and predicting of PSC for healthcare organizations. The results confirm the capability of the proposed model to predict patient safety grades in healthcare settings.
机译:背景:患者安全文化(PSC)作为组织文化的主要成员在医疗组织提供安全,有效和经济的关怀和服务方面发挥着关键作用。 PSC提供了一种帮助医院的方法,以改善患者的安全性并防止医疗错误。目的:目前的研究旨在衡量PSC和医疗保健专业人员对伊朗两家医院不良事件自愿报告的态度,并开发一种用于对PSC等级进行建模的混合智能方法。方法:患者安全文化(汇丰)问卷和两部分问卷的医院调查分别用于审查PSC和医疗保健专业人员对不良事件自愿报告的态度。主要成分分析(PCA)应用于汇率调查问卷中的主要组成部分,并构建患者安全培养的12个维度。使用自适应神经模糊推理系统(ANFIS)为分类问题进行建模的患者安全培养的总级。结果:几乎一半的参与者经历了医疗错误和不良事件。从医院第1和医院第2号医院的55.5%和50%的参与者的观点来看,PSC等级可接受。 ANFIS在研究医院患者安全文化整体成绩中的整体准确性为0.84。在这些个人对两项学习医院的患者安全文化上给予了可接受的成绩,超过50%的人认为应该报告所有医疗错误和近乎未命中。结论:提出了ANFIS算法,用于对医疗组织进行建模和预测PSC。结果证实了所提出的模型在医疗环境中预测患者安全等级的能力。

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